Repository logo
 
Loading...
Thumbnail Image
Publication

Design of multi innovation fractional LMS algorithm for parameter estimation of input nonlinear control autoregressive systems

Use this identifier to reference this record.
Name:Description:Size:Format: 
ART_DEE_JTM_AMM_2021.pdf3.09 MBAdobe PDF Download

Advisor(s)

Abstract(s)

The development of procedures based on fractional calculus is an emerging research area. This paper presents a new perspective regarding the fractional least mean square (FLMS) adaptive algorithm, called multi innovation FLMS (MIFLMS). We verify that the iterative parameter adaptation mechanism of the FLMS uses merely the current error value (scalar innovation). The MIFLMS expands the scalar innovation into a vector innovation (error vector) by considering data over a fixed window at each iteration. Therefore, the MIFLMS yields better convergence speed than the standard FLMS by increasing the length of innovation vector. The superior performance of the MIFLMS is verified through parameter identification problem of input nonlinear systems. The statistical performance indices based on multiple independent trials confirm the consistent accuracy and reliability of the proposed scheme.

Description

Keywords

Fractional adaptive algorithms Parameter estimation Input nonlinear systems Multi innovation theory

Citation

Research Projects

Organizational Units

Journal Issue

Publisher

Elsevier

Altmetrics